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European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
1
Micro-simulation Study of Vehicular Interactions on
Upgrades of Intercity Roads under Heterogeneous Traffic
Conditions in India
Shriniwas S. Arkatkar*1
, V. Thamizh Arasan2
1Assistant Professor, Transportation Engineering Division, Civil Engineering Department, BITS Pilani, Pilani-
333 031, Rajasthan, India. 2Professor, Transportation Engineering Division, Department of Civil Engineering, IIT Madras, Chennai- 600
036, Tamil Nadu, India.
Abstract
Purpose: Study of the basic traffic flow characteristics and clear understanding of vehicular interactions are
the pre-requisites for highway capacity analysis and to formulate effective traffic management and control
measures. The road traffic in India is highly heterogeneous comprising vehicles of wide ranging physical
dimensions, weight, power and dynamic characteristics. The problem of measuring volume of such
heterogeneous traffic has been addressed by converting the different types of vehicles into equivalent passenger
cars and expressing the volume as Passenger Car Unit per hour (PCU/h).
Methods: Computer simulation has emerged as an effective technique for modeling traffic flow due to its
capability to account for the randomness related to traffic. This paper is concerned with application of a
simulation model of heterogeneous traffic flow, named HETEROSIM, to quantify the vehicular interaction, in
terms of PCU, for the different categories of vehicles, by considering the traffic flow of representative
composition, on upgrades of different magnitudes on intercity roads in India.
Results and Conclusions: The PCU estimates, made through microscopic simulation, for the different types of
vehicles of heterogeneous traffic, for a wide range of grades and traffic volume, indicate that the PCU value of a
vehicle significantly changes with change in traffic volume, magnitude of upgrade and its length. It is found
that, the change in PCU value of vehicles is not significant beyond a length of 1600 m on grades. Also, it has
been found that the PCU estimates are accurate at 5% level of significance.
Keywords: Upgrades, Power-to-weight ratio, Heterogeneous traffic, simulation, Passenger car unit, capacity
1.0 Introduction
The information on traffic volume is an important input required for planning, analysis,
design and operation of roadway systems. Highway capacity values and speed-flow
relationships used for planning, design and operation of highways, in most of the developed
countries, pertain to fairly homogeneous traffic conditions comprising vehicles of more or
less uniform static and dynamic characteristics. The road traffic in developing countries like
India is highly heterogeneous comprising vehicles of wide ranging physical dimensions,
weight and dynamic characteristics. The different types of vehicles in India, which generally
present on intercity roads having uniform magnitude of upgrades may be broadly grouped
* Corresponding author: Shriniwas S Arkatkar ([email protected])
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into the following categories: 1. Buses, 2. Trucks, 3. Light commercial vehicles comprising
large vans and small trucks, 4. Cars including jeeps and small vans, 5. Motorized three-
wheelers, which include three-wheeled motorized vehicles to carry passengers and three
wheeled motorized vehicles to carry small quantities of goods, and 6. Motorized two-
wheelers, which include motorcycles, scooters and mopeds. These vehicles share the same
road space without any physical segregation. Under these conditions, the vehicles, for
maneuver, take any lateral position along the width of roadway, based on space availability.
When such different types of vehicles, with varying static and dynamic characteristics, are
allowed to mix and move on the same roadway facility, a variable set of longitudinal and
transverse distributions of vehicles may be noticed from time to time. This results into very
complex dynamic vehicular interactions. The interaction between the vehicles can be
represented in terms of the amount of impedance caused to flow of traffic by a vehicle type
(subject vehicle type, for which the dynamic PCU value is to be estimated) in comparison
with that of passenger cars (reference vehicle category). The relative impedance can be
quantified in terms of Passenger Car Units (PCU). Under such heterogeneous traffic
conditions in India, expressing traffic volume as number of vehicles passing a given section
of road per unit time will be inappropriate and some other suitable base needs to be adopted
for the purpose. The problem of measuring volume of such heterogeneous traffic has been
addressed by converting the different types of vehicles into equivalent passenger cars and
expressing the volume in terms of Passenger Car Unit (PCU) per hour. On upgrades, heavy
vehicles such as trucks, buses, etc. will experience significant reduction in their speeds,
whereas, passenger cars and other smaller vehicles such as motorized-two-wheelers may
experience relatively lesser speed reduction. This variation in speed reduction among the
different vehicle categories can be attributed to their wide ranging physical characteristics
such as dimensions, weight, etc. and dynamic characteristics such as engine power,
acceleration rate, etc. The variation in the level of interaction between the vehicles on
upgrades may result in different set of PCU values of the vehicle types. Hence, it is necessary
to model the traffic flow on grades and study the change in traffic flow characteristics and
vehicular interactions with variation in magnitude of upgrade and its length.
Traffic phenomena are complex and nonlinear, due to the interactions of a large number of
vehicles. Moreover, vehicles do not interact simply following the laws of mechanics, but also
due to the reactions of human drivers. Normally, solutions to traffic problems are evolved
through empirical or analytical approaches by conducting on-site studies on traffic behavior.
However, these conventional methods have certain limitations and drawbacks, particularly,
while dealing with complex situations involving considerable amount of stochastic attributes.
An empirical approach is based on extensive field data, which is neither easily available nor
easily collectable. The analytical approach has the limitation of underlying assumptions of
homogeneity, which are far from the high variations of driver-vehicle characteristics in
heterogeneous traffic conditions. In view of this, researchers concentrated on appropriate
modeling technique and the modeling approach through simulation, emerged as the most
powerful, flexible and acceptable solution searching tool. A review of the literature shows
that only limited studies have been done to develop an understanding of simulation of traffic
flow under non-lane based heterogeneous traffic conditions. The prominent among them are
briefly reviewed here. Several researchers (Chari and Badarinath, 1983; Palaniswamy et al.,
1985; Ramanayya, 1988; Kumar, 1994; Singh, 1999; Oketch, 2000) have attempted to model
the heterogeneous traffic and most of these models are microscopic in nature. Chandra and
Pariah (2004) developed a heterogeneous-traffic-flow simulation model to analyze urban road
traffic. The various input parameters required for the model such as classified volume count,
free speed of different types of vehicles, headway distribution at different volume levels, and
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lateral clearances were collected through video recording technique. It was found that the free
speed data of vehicles followed the normal distribution and hyperlang model was found to fit
well for the headways on urban roads under mixed traffic condition. The analysis, through
this simulation study, indicated that the interaction between the vehicles is the function of
traffic volume and composition. Cho and Wu (2004) proposed a motorcycle traffic flow
simulation model, which contains longitudinal and lateral movement models. The concept of
the longitudinal model is to decide an appropriate speed under the repulsion and the thrust.
The concept of the lateral model is to modify the lateral position to get the maximum lateral
space.
Arasan and Koshy (2005) developed a heterogeneous-traffic-flow simulation model to
study the various characteristics of the traffic flow at micro level under mixed traffic
condition. The vehicles are represented, with dimensions, as rectangular blocks occupying a
specified area of road space. The positions of vehicles are represented using coordinates with
reference to an origin. For the purpose of simulation, the length of road stretch as well as the
road width can be varied as per user specification. The model was implemented in C++
programming language with modular software design. The model is also capable of showing
the animation of simulated traffic movements over the road stretch. Implementing the cellular
automata (CA) concept for modeling the heterogeneous traffic has been suggested by some
researchers (Lan and Chang 2005, Hsu et al. 2007, Mallikarjuna and Ramachandra Rao
2009). Bohang et al. (2009) developed a new simulation model based on safety distance
model, and the mixed traffic advance model for the mixed traffic conditions in China. An
angle between the direction of vehicle movement and the lane (θ) is introduced into the
stimulation-action model after a great deal of actual investigation and study. The following
acceleration and angle of the vehicle is expressed through the change of the angle. Motor
vehicles adjust their speed and angle according to the movement of all the non-motorized
vehicles in front of them. The model is the traditional stimulation-action model, if θ is 0
degrees; the maximum of θ is 45 degrees considering actual traffic and the behavior of the
driver. The characteristics of the vehicle movement are accurately described by the process of
recycle from 0 degree to the maximum. The improved model is proposed based on the
stimulation-action model by analyzing the behavior of the driver under mixed traffic
conditions in China. Lan and Chang (2005) developed an inhomogeneous cellular automata
models to elucidate the interacting movements of cars and motorcycles in mixed traffic
contexts. Based on the field survey, the authors established deterministic cellular automata
(CA) rules to govern the particle movements in a two-dimensional space. The instantaneous
positions and speeds for all particles are updated in parallel per second accordingly. The
deterministic CA models have been validated by another set of field observed data. The
unique behavior patterns of motorcycles were characterized by Lee (2007). Three models
were developed to describe motorcycle movements, namely the longitudinal headway model,
the oblique & lateral headway model and the path choice model. The longitudinal headway
model focused on describing the phenomenon that a motorcycle will maintain a shorter
headway when aligning to the edge of the preceding vehicle. The oblique & lateral headway
model described the headway distribution of motorcycles when they are following the
preceding vehicles obliquely. The path choice behavior was modeled by using a multinomial
logit model which described the dynamic virtual lane-based movements of motorcycles.
Further, an agent-based traffic simulator was built to represent the motorcycle behavior in
mixed traffic flow. The mathematical models developed for describing the motorcycle
behavior were implemented in this simulator. Through the verification process, this
simulation system showed that it was able to work as intended and represent the characteristic
behavior patterns of motorcycles. Three applications of this simulator were presented to show
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that this simulator was able to carry out policy tests and was a powerful tool for conducting a
study on mixed traffic flow containing motorcycles.
A review of the literature on modeling movement of vehicles on upgrades have shown that
in the past, researchers have used force balance equation and vehicle mechanics (weight-to-
power ratio of the vehicle) for developing models that predicts truck speeds on upgrades of
any percentage and length (Gillespie, 1985; Archilla and Fernandez De Cieza, 1996; Lan and
Menendez, 2003). All these studies, however, are mainly related to characterization of truck
performance on upgrades under homogeneous traffic conditions and hence, the results of
these studies are not applicable for Indian conditions. The impact of road gradient on speed
was analyzed by Yagar and Aerde (1983) and found that the operating speed at a location is
expected to decrease by approximately 1.8 km/h for each 1% of grade when going uphill.
Traffic flow characteristics on freeway upgrades in Germany, were analyzed by Brilon and
Bressler (2004). A combination of measurements, analyses of continuous counting results
and microscopic simulations were performed. Based on the study, it was found that road
capacity depends solely on the degree of gradient. Speed, however, is determined not only by
the degree of the gradient but also by the length of the upgrade as well.
The Highway Capacity manual (HCM, 2000), has given the passenger-car-equivalent
(PCE) values for trucks and recreational vehicles for different grades. The variables
pertaining to various roadway and traffic conditions, such as magnitude of upgrade and its
length, number of lanes, pavement type and condition, flow rate and percentage composition
of trucks were tested (through PCE estimation) for both single and multiple truck populations
by Ingle (2001). The relationships for these variables were found to be the same for single
truck populations as compared to multiple truck populations. Based on these results, it was
recommended that the simplification of simulating a single truck population with an average
weight to power ratio can confidently be used. In the past, various approaches have been
adopted for estimation of Passenger Car Unit (PCU) or Passenger Car Equivalent (PCE)
values of vehicles. The bases used for the estimation process are (i) delay e.g. Craus et al.
1980, (ii) speed (e.g. Huber, 1982; and Webster and Elefteriadou, 1999), (iii) density (e.g.
Huber, 1982; and Webster and Elefteriadou,1999), (iv) headway (e.g. Krammes and
Crowley,1986), and (v) queue discharge (e.g. Al-Kaisy et al. 2005). Elefteriadou et al. (1997)
studied the impact of grade, and length of grade on PCE values using simulation model. The
authors found that the PCE value of the vehicles increases significantly with increase in the
magnitude of gradient and grade length. Al-Kaisy et al. (2005) also found a similar trend. The
authors also found that the effect of trucks and other heavy vehicles on traffic stream during
congestion is higher from their effect during free-flow conditions. All these studies, however,
are mainly related to estimation of PCE for heavy vehicles (Trucks and Buses) under
homogeneous traffic conditions and hence, the results of these studies are not applicable for
Indian conditions. Fan (1990) estimated the PCU values for various vehicle categories, for
the congested traffic flow conditions prevailing on the Pan Island Expressway, Singapore.
The study also revealed that the PCU values recommended by the highway capacity manuals
of U.S.A., U.K., etc. may not be directly suitable for capacity analysis in Asian countries.
In India, Indian Roads Congress, the professional organization responsible for development
of codes and guidelines related to road transportation, has provided a set of constant PCU
values for different vehicle categories, (IRC: 64-1990), which are based on limited field
observed data. Indian Roads Congress has recommended that the same PCU values can be
used for rolling/hilly sections since the effect of terrain has been accounted for in a
consolidated manner in the recommended Design Service Volumes. Hence, it may be inferred
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that the PCU values are valid for a particular traffic and roadway condition. Tiwari et al.
(2000) concluded that the modified density method can be used to determine passenger car
units for various traffic entity groups on rural and suburban roads. It is found from the review
of Indian studies related to PCU estimation that there is only one significant study of Chandra
and Goyal (2001), on the subject matter. The researchers studied the effect of gradient on
capacity of two-lane roads. The authors calculated the PCU values using two variables: (i)
speed ratio of the car to the subject vehicle (for which PCU value is to be calculated), and (ii)
space- occupancy ratio of the car to the subject vehicle. This study concluded that (i) the PCU
for a vehicle type increases with increase in gradient, and (ii) the effect of grade on PCU is
linear. However, these results are empirical and are based on limited traffic data. The review
of literature on the subject matter of traffic flow modeling using simulation technique shows
that the modeling approach through simulation emerged as the most powerful, flexible and
acceptable solution searching tool. The review of literature on the subject matter of
movement of vehicles on upgrades and PCU estimation reveals that studies conducted are
mostly related to fairly homogeneous traffic conditions, and the few studies conducted under
heterogeneous traffic conditions are not comprehensive enough to replicate the field
conditions accurately.
The review clearly shows that, at present, there is no ready-to-use reference material
available on estimation of PCU of vehicles traffic on upgrades under heterogeneous traffic
conditions prevailing in India. The PCU value of a vehicle category may not be constant as
given in (IRC: 64-1990), because it may vary, based on not only the vehicle factors but also
with several other factors associated with roadway and traffic conditions. It may be
appropriate to consider the PCU value of a vehicle type as a dynamic quantity instead of
considering it as constant. Hence, there is a need to accurately estimate the PCU values,
through a comprehensive study of the interaction between vehicles of the traffic, at the micro-
level, over a wide range of roadway and traffic conditions. The derived PCU values, using
microscopic technique, can be useful for enhancing the accuracy of capacity estimates under
heterogeneous traffic conditions. Hence, the research work reported here, is aimed at
quantification of the vehicular interaction under heterogeneous traffic conditions, in terms of
PCU value of different vehicle types, due to changes in the magnitude of upgrade and its
length, over a wide range of traffic volume levels. The procedure adopted for PCU estimation
and the relevant results, along with the details of the simulation model used for this study, are
presented in the following sections.
2.0 The simulation model
A recently developed micro simulation model, of heterogeneous traffic-flow named,
HETEROSIM (Arasan and Koshy, 2005) is used to study the vehicular interactions, at micro-
level, over a wide range of traffic flow conditions on upgrades of different magnitudes. Field
data collected on traffic flow characteristics such as free speed, physical dimensions of
different vehicle types, lateral clearance between vehicles, etc. are used in calibration and
validation of the simulation model. The acceleration rates, over different speed ranges,
required for simulation of heterogeneous traffic flow on grades, were estimated for different
upgrades. The speed-distance profiles are developed for different vehicle categories,
pertaining to grades of different magnitudes, using the validated simulation model. The
simulation model is then used to estimate PCU values of different types of vehicles. Finally, a
check for the accuracy of the estimated PCU values is also made.
As this study pertains to the heterogeneous traffic conditions prevailing in India, the
available traffic simulation models, which are based on homogeneous traffic conditions,
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where clear lane and queue discipline exists, are not applicable to study the heterogeneous
traffic flow characteristics. Also, the models developed through research attempts made to
model heterogeneous traffic flow by Khan and Maini (2000); Marwah and Singh (2000);
Kumar and Rao (1996); and Ramanayya (1988), are limited in scope and do not address all
the aspects comprehensively.
A recently developed model of heterogeneous traffic flow, named HETEROSIM Arasan
and Koshy (2005), however, is comprehensive and is capable of replicating the
heterogeneous traffic flow. The modeling framework is explained briefly here to provide the
background for the study. For the purpose of simulation, the entire road space is considered
as single unit and the vehicles are represented as rectangular blocks on the road space, the
length and breadth of the blocks representing respectively, the overall length and the overall
breadth of the vehicles. The front left corner of the rectangular block is taken as the reference
point, and the position of vehicles on the road space is identified based on the coordinates of
the reference point with respect to an origin chosen at a convenient location on the space. The
simulation model uses the interval scanning technique with fixed increment of time. For the
purpose of simulation, the length of road stretch as well as the road width can be varied as per
user specification. The model was implemented in C++ programming language with modular
software design. The flow diagram illustrating the basic logical aspects involved in the
program is shown as Fig. 1.
Yes
Start
Inputs and Initialization
Is cumulative precision time = set scan interval?
Is current time = cumulative headway?
Add vehicle
Headway to output file
Generate headway for next vehicle
Is simulation time over?
End
Move all vehicles
Current time = current time + precision
Yes
No
No
No
Yes
Figure 1: General Structure of Simulation Model
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The first vehicle is generated after initialization of the various parameters required to
simulate heterogeneous traffic flow. Then, the generated vehicle is added to the system when
the current time (clock time) becomes equal to the cumulative headway. At this stage, the
module for adding vehicles (“Add Vehicle”) will be activated to facilitate the process. At
higher traffic flow levels; there is a chance of more vehicle arrivals during each scan interval
(1s). To address this aspect, an additional clock for scanning with a precision of 0.05 s was
provided. Checking for the possibility of placing a generated vehicle during a scan interval
(1s) on the simulation road stretch, as well as updating the status of the vehicles already in the
system is done when the cumulative precision scan interval is equal to the set scan interval of
0.5s.The simulation is continued until the input simulation-run length is completed. The
simulation process consists of the following major sequential steps related to traffic flow on
mid-block section of roads: (1) vehicle generation, (2) vehicle placement, and (3) vehicle
movement. The model is also capable of displaying the animation of simulated traffic
movements through mid block sections. The animation module of the simulation model
displays the model’s operational behavior graphically during the simulation runs, a
“snapshot” of which is shown in Fig. 2.
Figure 2: Snapshot of animation of simulated heterogeneous traffic flow
Vehicle Generation
In a stochastic traffic simulation process, the vehicles arrive randomly, and they may have
varying characteristics (e.g., speed, vehicle type, etc.). Traffic-simulation models therefore,
require randomness to be incorporated to take care of the stochiasticity. This is easily done by
generating a sequence of random numbers. For generation of headways, free speed, etc., the
model uses several random number streams, which are generated by specifying separate seed
value. Whenever a vehicle is generated, the associated headway is added to the sum of all the
previous headways generated to obtain the cumulative headway. The arrival of a generated
vehicle occurs at the start of the warm-up road stretch when the cumulative headway equals
the simulation clock time. At this point of time, after updating the positions of all the vehicles
on the road stretch, the vehicle-placement logic is invoked.
Vehicle Placement
Any generated vehicle is placed at the beginning of the simulation stretch, considering the
safe headway (which is based on the free speed assigned to the entering vehicle), lateral gap
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and the overall width of the vehicle with lateral clearances. If the longitudinal gap in front is
less than the minimum required safe gap, the entering vehicle is assigned the speed of the
leading vehicle, and once again the check for safe gap is made. If the gap is still insufficient
to match the reduced speed of the entering vehicle, it is kept as backlog, and its entry is
shifted to the next scan interval. During every scan interval, the vehicles remaining in the
backlog will be admitted first, before allowing the entry of a newly generated vehicle.
Vehicle Movement
This module of the program deals with updating the positions of all the vehicles in the
study road stretch sequentially, beginning with the exit end, using the formulated movement
logic. Each vehicle is assumed to accelerate to its free speed or to the speed limit specified for
the road stretch, whichever is minimum, if there is no slow vehicle immediately ahead. If
there is a slow vehicle in front, the possibility for overtaking the slow vehicle is explored. If
possible, the fast vehicle will take the slow vehicle. If overtaking is not possible, the fast
vehicle decelerates to the speed of the slow vehicle in front and follows it.
2.1 Model validation on roads with different upgrades
The simulation model, HETEROSIM (developed for non-lane based traffic conditions
prevailing in India), when used for studying the effect of gradient, requires data, particularly
on free-flow speeds of the different vehicle types at the start of the sections and acceleration
rates of the different vehicle categories generally present on Indian intercity roads, while
negotiating a particular gradient, in addition to the other relevant data pertaining to the
observed roadway and traffic conditions.
2.2 Selection of study stretches
Out of the three study stretches, selected for data collection, one is on National Highway
No. 4 (NH-4), near Pune, in Maharashtra (Western part of India) and its specific location is
between km 31.2 and km 31.5 (length of 300 m), with 3% of gradient. The other two
stretches are on Mumbai-Pune bypass road, connecting NH-4, near Pune, in Maharashtra.
Their specific locations are between km 2.6 and km 3.0 (length of 400 m) with 3.78 % of
gradient and between km 5.2 and km 5.9 (length of 700 m) with 5 % of gradient. The selected
stretches are four lane divided roads with a total carriageway width of 8.75 m (including
shoulder) for each direction of traffic flow. These study stretches were selected after
conducting reconnaissance survey to satisfy the following conditions: (1) The stretch should
be fairly straight and have uniform gradient for a considerable length, (2) Width of Roadway
should be uniform and, (3) There should not be any direct access from the adjoining land uses
on both sides. The simulation model was validated for all the upgrades, namely, 3%, 3.78%,
5%. In this paper, the validation results along with the relevant data collected, pertaining to
two grades of magnitude 3.78% and 5% are presented.
2.3 Free speed on selected upgrades
In a traffic simulation model, there are two types of speeds that may be considered, these
are, desired speed (free-speed) and actual speed. Free speeds of different types of vehicles are
important input parameters for any traffic-flow simulation model. Free speed is defined as the
speed adopted by drivers when not restricted by other vehicles in the stream under a set of
given roadway and environmental conditions. The actual speed is the speed with which a
vehicle moves at a given point of time in the simulation process, and this is subjected to
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change over time based on the traffic conditions. For the purpose of model validation, the
free speed data was collected during lean traffic periods when the vehicles were freely
moving without any hindrance from other vehicles present on the road. The free speed of the
different categories of vehicles were measured by noting the time taken by the vehicles to
travel a trap length of 30 m, on the study stretches, at the respective initial positions of the
chosen sections of different grades (km 2.600 for 3.78% upgrade and km 5.500 for 5%
upgrade). Table 1 gives the details of the free speed data of various vehicle classes collected
on the road stretches with magnitude of upgrade as 3.78% and 5%. The variation in the free
speeds of different vehicles (mean, minimum, maximum and standard deviation values
mentioned in Table 1) can be attributed to the magnitude of upgrade, make of the vehicle,
loading (less loaded or heavily loaded), the age of the vehicle, level of maintenance, age, sex
and the behavior of the driver. These factors fall over a wide range under Indian conditions.
This variation in free speed data, for each of the vehicle categories has been represented very
well using a probability distribution, named Normal distribution. This hypothesis has been
proved very well in an Indian study performed by Kadiyali et. al, 198. Hence, to incorporate
this random variable (free speed of a given vehicle category) into simulation process, the
Box-Muller Transformation method is used to generate Normal deviates (S) using the
equation,
S = (- 2 ln r1)1/2
cos (2 r2) (1)
where, r1 and r2 are two uniform random numbers, and S is a Normal random deviate.
These random numbers r1 and r2 are sampled from two different random number streams. A
sample u from any standardized Normal distribution, with specified mean () and standard
deviation () can be obtained as,
u = S + (2)
This value of u is assigned as the free speed of the vehicle under consideration. However,
truncated Normal distributions with extreme values as observed in the field were used for
generation of free speeds in the simulation process. This enables drawing of data from
Normal distribution, rejecting the values generated outside the speed range used for
truncation and replacing the value by generating fresh free speed from within the range. The
simulation program used for this study uses different random-number streams for the
generation of vehicle arrivals, identification of vehicle type, assigning free speed, etc.
2.4 Estimation of acceleration rates
The acceleration ability of the vehicles on different upgrades will be significantly lower as
compared to their acceleration ability on level roads. On level roads, different vehicles may
maintain their speeds uniformly. However, on upgrades, heavy vehicles such as trucks, will
experience significant reduction in their speeds, whereas, passenger cars and other smaller
vehicles such as motorized-two-wheelers may experience relatively lesser speed reduction.
This variation in speed reduction among the different vehicle categories on upgrades, in India
under heterogeneous traffic conditions, can be attributed to their wide ranging physical
characteristics such as dimensions, weight, etc. and dynamic characteristics such as engine
power, acceleration rate, etc. Therefore, there is a need to estimate or calibrate the
acceleration rates of different vehicle types for different grades in India. The procedure
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Table 1: Free speed parameters of different types of vehicles on upgrades
L.C.V. - Light Commercial Vehicles, M.Th.W. – Motorized Three-Wheelers, M.T.W. - Motorized Two-Wheelers
adopted for estimation acceleration rates for different speed ranges under traffic conditions
prevailing in India, is explained in detail below.
The thrust required for the forward movement of a road vehicle is determined by the
summation of forces acting on the vehicle in the longitudinal direction. The forces acting on
the vehicle while negotiating an upgrade of magnitude i percent, are: (i) rolling resistance, (ii)
air resistance, (iii) grade resistance, and (iv) inertial forces during acceleration and
deceleration, as shown in Fig. 3.
Fig. 3 Forces acting on a moving vehicle on upgrades
The governing equation for the forward movement of any vehicle, when it encounters a
grade, is determined by the summation of the forces on the vehicle in the longitudinal
direction. The following is the fundamental equation of motion for a vehicle (Bennett and
Greenwood (2001); Highway Development and Management Manual (HDM-4)):
][111000
FgFrFaEMRATMvEMRATM
Pda
(3)
Where,
a is acceleration, in m/s2;
Vehicle
category
(1)
Free speed parameters on 3.78 %
Upgrade
(km/h)
Free speed parameters on 5 % Upgrade
(km/h)
Mean
(2)
Min.
(3)
Max.
(4)
Standa
rd
deviati
on
(5)
Mean
(6)
Min.
(7)
Max.
(8)
Standa
rd
deviati
on
(9)
Buses 52 45 74 11 44 36 70 11
Trucks 42 22 74 13 36 18 70 13
L.C.V. 54 34 74 11 47 33 70 9
Cars 72 48 100 14 67 42 96 13
M.Th.W 38 25 50 8 34 24 48 6
M.T.W 52 30 72 11 50 26 72 9
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Pd is the driving power delivered to the wheels, in kW,
M is the vehicle mass; EMRAT is effective mass ratio,
Fa is Aerodynamic drag resistance in N;
Fr is Rolling resistance in N,
Fg is Gradient resistance in N, and v is speed of the vehicle, in m/s.
The equation used for calculating aerodynamic drag resistance is as follows:
2*****5.0 vAFCDmultCDFa (4)
Where,
Fa is aerodynamic force opposing the motion of vehicle, in N,
ρ is mass density of air, in kg/m3 (1.2 kg/m
3)
CD is aerodynamic drag coefficient
CDmult is aerodynamic drag coefficient multiplier
AF is projected frontal area of the vehicle in m2 and
v is speed of the vehicle, in m/s
The values pertaining to different parameters such as CD, CDmult and AF, which are used
to estimate the aerodynamic resistance, have been used separately for each of the vehicle
categories considered for this case study.
The equation used for calculating rolling resistance is as follows:
MfgFr (5)
Where,
Fr is rolling resistance in N, M is mass of vehicle in kg, and
f is coefficient of rolling resistance.
It has been found that under traffic conditions exist in India, the value of coefficient of
resistance (f) is approximately constant up to a speed of 50 km/h (Kadilyali et al. 1982). At
higher speeds (more than 50 km/h), the values for Indian roads may be approximately
calculated as,
5001.01 vff o (6)
Where,
f is coefficient of rolling resistance at speed v,
v is speed in km/h, and fo is coefficient of rolling resistance assumed constant up to a
speed of 50 km/h
The equation used for calculating grade resistance is given as follows:
100
MigFg (7)
where,
Fg is gradient resistance in N,
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M is mass of vehicle in kg, and
i is Magnitude of gradient in percentage.
Equation (1) indicates that the ability of a vehicle to accelerate on an upgrade is dependent
on the used power-to-weight ratio, the mass and the various forces opposing the motion.
Vehicles with low power-to-weight ratios such as trucks, while negotiating up grades, may
decelerate to a crawl or terminal speed, where forces are in balance and the acceleration is
equal to zero. This steady-state terminal speed can, thus, be obtained by solving the above
equation for the velocity term. Thus, the limiting speed of a vehicle on a grade is a function
of the power-to-weight ratio. Hence, the data pertaining to maximum power (kW) and gross
vehicle weight (kg) of different makes for each vehicle category which exist in India was
collected from different manufacturers of the country. Finally, the mean representative values
of power and weight for each vehicle category were arrived at for calculating the acceleration
rates at various speed ranges. The mean representative values of maximum power and gross
vehicle weight, for each vehicle category considered for this case study, are given in columns
(2) and (3) of Table 2 respectively. The values pertaining to the coefficient of drag (CD), CD
multiplier (CDmult), and the projected frontal area in m2 (AF), for each vehicle category,
taken from the manual of Highway Development and Management (HDM-4) (Bennett and
Greenwood, 2001), are given in columns (4), (5) and (6) of Table 2, respectively. The
manual has provided these values for different vehicle categories exist in most of the Asian
countries such as China, India, Indonesia, etc. The CD is a function of the direction of
movement of vehicle relative to the wind direction. The apparent direction of the wind, which
is the vector resultant of the vehicle-movement direction and the wind direction, is termed the
yaw angle (Ψ). The values of CD reported in the literature are usually from wind tunnel tests
conducted with a zero degree yaw (i.e. front on to the wind) and accordingly, are the
minimum for the vehicle. Hence, to obtain typical values of CD, which would be found on
roads, it is necessary to adjust for the variation in wind direction. This can be done using a
“typical” wind angle which increases the zero degree-yaw CD, leading to wind averaged CD,
or CD (Ψ). The ratio of CD (Ψ) divided by CD is termed the CD multiplier (CDmult). The
Effective Mass RATIO (EMRAT) for each vehicle category is also calculated at various
speeds as per the guidelines of HDM-4 manual. The coefficient of rolling resistance (f) is
taken as 0.01 based on an Indian study (Kadiyali et al. 1982), for pavement surface of the
study stretch is made of asphaltic concrete.
Table 2: Vehicular characteristics used for estimation of acceleration rates on upgrades
L.C.V–Light commercial vehicles, M.Th.W- Motorized Three- Wheelers, M.T.W- Motorized Two-Wheelers
Vehicle
Category
(1)
Gross
Vehicle
Weight
(kg)
(2)
Max.
Power
(kW)
(3)
Aerodynam
ic Drag
Coefficient
(CD)
(4)
Aerodynamic
Drag
Coefficient
Multiplier
(CDmult)
(5)
Projected
Frontal
Area (AF)
(m2)
(6)
Buses 15200 103.00 0.55 1.22 5
Trucks 17000 104.00 0.6 1.19 5
LCV 6500 60.00 0.5 1.16 2.85
Cars 1500 47.00 0.42 1.12 1.9
M.T.W 250 6.80 0.7 1.12 0.8
M.Th.W 900 6.00 0.56 1.12 1.35
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For calibration of used driving power delivered to the wheels (Pd), the variable, ‘power
factor’ introduced by Lucic (2001) is used. The calibration of the variable, ‘power factor’
involves finding the speed at which the vehicle power reaches its maximum. For this purpose,
a terminal speed for each vehicle category, at which the vehicle power reaches its maximum,
is calculated by considering acceleration, a = 0 in equation (1). Then, the ratio of vehicle
speed under consideration and maximum speed at which vehicle power reaches its maximum
is considered as variable power factor. The terminal speed for each of the vehicle category,
which are used to calibrate the variable ‘power factor’ was determined separately, using
respective vehicle values for the parameters required in equation (1). The used driving power
(pd), then, can be estimated by multiplying the average power value by this variable power
factor. The acceleration rates for different vehicle categories existing In India, estimated over
different speed ranges, which were used as the input to the simulation model, for model
validation on both the grades of 3.78% and 5%, are given in Table 3. From the Table,
peculiarly it can be seen that the acceleration rates of the vehicle types such as buses, trucks,
light commercial vehicles and motorized three-wheelers, in the speed range of more than 40
km/h, are negative. The reason behind these negative values can be explained as follows. The
force balance equation (1) consists of two components, namely, drive force, derived based on
the engine power of the vehicle and resistances (air, rolling and grade) arising from the grade
of the given magnitude. The propulsive effort (drive force) is derived from the engine (based
on the power of the vehicle) to overcome these forces. Any reserve in drive force, if
available, may be used either to accelerate the vehicle or to overcome the drag arising from
up grades. When encountering a grade of certain magnitude, requiring thrust that is greater
than the available drive force (magnitude of resistances is higher than the drive force
generated from the engine of the vehicle), the deficiency is made up by deceleration of the
vehicle.
Table 3: Estimated acceleration rates for different upgrades
L.C.V–Light commercial vehicles, M.Th.W- Motorized Three- Wheelers, M.T.W- Motorized Two-Wheelers
2.5 Data Collection
On upgrades, the traffic flow characteristics (speed of the vehicles), will change as its
length increases. So, in the case of upgrades, for the purpose of model validation, it is very
important to compare the simulation-output values with the corresponding observed values at
different sections of the gradient length. Therefore, it is required to collect the traffic flow
data for a particular upgrade, at different intervals of the length of upgrade, selected for
Vehicle
category
(1)
Estimated acceleration rates at various speed ranges (m/s2) for
Upgrade of Magnitude
3.78 % 5%
0-20
Km/h
(2)
20-40
Km/h
(3)
Above
40
Km/h
(4)
0-20
Km/h
(5)
20-40
Km/h
(6)
Above
40
Km/h
(7)
Buses 0.09 0.09 - 0.10 0.08 0.05 - 0.21
Trucks 0.07 0.07 - 0.13 0.06 0.02 - 0.25
L.C.V. 0.08 0.08 - 0.02 0.07 0.06 - 0.07
Cars 0.41 0.41 0.38 0.38 0.38 0.35
M.T.W 0.75 0.64 0.38 0.70 0.60 0.35
M.Th.W 0.12 0.08 - 0.09 0.11 0.03 - 0.20
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model validation. The required traffic data for the study were collected by video recording of
the traffic flow on the selected locations. The traffic flow on identified upgrade sections in
India was recorded for one hour using a video camera mounted on the surface of an adjoining
elevated ground, which enabled recording of all the traffic flow characteristics continuously.
The traffic flow was captured, at each of the chosen three different locations on 3.78%
gradient at: km 2.600, km 2.800 and km 3.000 and four different locations on 5% gradient at:
km 5.200, km 5.500, km 5.700 and km 5.900 along the grade. The video captured traffic data
of the locations were then transferred to a Work Station (computer) for detailed analysis. The
inputs required for the model to simulate the heterogeneous traffic flow are: road geometry,
traffic volume, and composition, vehicle dimensions, minimum and maximum lateral spacing
between vehicles, minimum longitudinal spacing between vehicles, free speeds of different
types of vehicles, acceleration and deceleration characteristics of vehicles, the type of
headway distribution and the simulation period. The required input traffic data was obtained
by running the video of the traffic flow at a slower speed (⅛th
of the actual speed) to enable
one person to record the data by observing the details displayed on the monitor of the
computer.
A total of 578 and 598 vehicles per hour were observed to pass through the section during
the observation period at the respective initial positions of different gradients (km 2.600 for
3.78% and km 5.500 for 5%). The category-wise vehicle count was made conveniently by
repeatedly playing the video recording in the computer. The observed traffic compositions,
for the measured traffic volumes of 578 and 598 vehicles per hour, at the initial position of
the study stretches (3.78% and 5%, respectively) were noted (Table 4). Similarly, using the
same data extraction technique, the observed traffic volume and composition, at all other
locations, for each of the grades, were also obtained. It was observed that, for each of the
grades, there is no significant difference in the traffic volume and composition obtained from
the traffic flows passing through various locations of a particular grade. It may be noted that
the traffic compositions provided in Table 4, were used only for the purpose of model
validation. These observed traffic compositions are found to be distinctly different from the
traffic composition observed in the case of intercity roads (multilane roads) in developed
countries. The percentage of heavy vehicles such as buses, trucks, and, light commercial
vehicles on intercity roads is found to be on higher than the percentage of smaller vehicles
such as cars, motorized two-wheelers and motorized three-wheelers. The vehicles, of
heterogeneous traffic with widely varying physical and operational characteristics such as the
one prevailing on Indian roads, as mentioned earlier occupy, any convenient lateral position
on the road based on the availability of space without any lane discipline. Heavy vehicles
like, trucks maintain lower speeds, as compared to cars, even at free flow conditions.
Therefore, at low volume levels, the presence of heavy vehicles (trucks), with relatively low
free speed, may obstruct the faster movement of the cars significantly. When the traffic
volume becomes high, the magnitude of relative speed difference between motor vehicles is
governed the physical dimensions (size) and the maneuvering ability of vehicles, which play
a major role in determining their interactions. At this stage, all the vehicles move very close
to each other resulting in frequent aacceleration and deceleration. This condition leads to
relatively higher rate of reduction in the speeds of smaller vehicles like cars, due to even
smaller rate of reduction in speed of heavy vehicles, like trucks. Hence, it is very interesting
to study the level of interactions between the moving vehicles when the percentage of heavy
vehicles is higher than the percentage of smaller vehicles, over a wide range of roadway and
traffic conditions. The overall dimensions of all categories of vehicles and the minimum and
maximum values of lateral-clearance share (correspond to, respectively, zero speed and free
speed conditions of respective vehicles) were adopted from an earlier study by Arasan and
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Koshy (2005).The lateral-clearance-share values are used to calculate the actual lateral
clearance between vehicles based on the type of the subject vehicle and the vehicle by the
side of it. Any vehicle, moving in a traffic stream, has to maintain sufficient lateral clearance
on the left and right sides with respect to other vehicles/curb/ median to avoid side friction.
These lateral clearances depend upon the speed of the vehicle being considered, speed of
the adjacent vehicle in the transverse direction, and their respective types. The minimum and
the maximum clearance-share values correspond to, respectively, zero speed and free speed
conditions of respective vehicles.
Table 4: Observed traffic compositions on different upgrades
L.C.V–Light commercial vehicles, M.Th.W- Motorized Three- Wheelers, M.T.W- Motorized Two-Wheelers
For the purpose of model validation, it was decided to compare the observed and simulated
speeds maintained by the different categories of vehicles at regular intervals, when the
vehicles negotiate a particular upgrade. The length of stretches with their grades of magnitude
of 3.78% and 5% were respectively 400 m and 700 m. The total width of roadway available
for one direction of movement on the divided highway, with bituminous surfacing was 8.75m
for both the upgrades. For the purpose of validation, for both the grades, the simulation was
run with three random number seeds, and the averages of the three runs were taken as the
final output of the model. The observed roadway conditions, measured free speed parameters
at the initial position (Table 1), observed traffic volume and composition (Table 4) and the
acceleration rates (estimated at various speed ranges: (Table 3)) were given as input to the
simulation process. The inter-arrival time (headway) of vehicles under heterogeneous traffic
conditions in India, was found to fit well into negative exponential distribution and the free
speeds of different categories of vehicles, based on the results of an earlier study by Kadiyali
et al. (1981), was assumed to follow normal distribution. These distributions, then, formed
the basis for input of the two parameters for the purpose of simulation. The speeds
maintained by the different categories of vehicles considered for this case study, at the
selected sections on the study stretches were obtained as the simulation output.
The comparison of the observed and simulated speeds maintained by the different types of
vehicles under heterogeneous traffic conditions in India, at the two selected sections on
3.78% upgrade (km 2.600 to km 2.800 (200 m) and km 2.600 to km 3.000 (400 m)), namely,
sections I and II are shown in Table 5. Then, the comparison of the observed and simulated
speeds maintained by the different types of vehicles under heterogeneous traffic conditions in
India, at the three selected sections on 5% upgrade (km 5200 to km 5500(300 m), km 5200 to
km 5700 (500 m) and km 5200 to km 5900 (700 m)), namely, sections I, II and III are shown
in Table 6. From the Tables 5 and 6, it can be seen that the simulated speed values
significantly match with the field observed speeds for all vehicle types for each of the
distances of upgrades. A statistical validation of the model, based on observed and simulated
Vehicle
category
Traffic composition (%) on upgrades of magnitude
3.78 % 5%
Buses 23 19
Trucks 33 38
L.C.V. 12 10
Cars 14 19
M.T.W 15 11
M.Th.W 3 3
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speeds of different categories of vehicles on each of the upgrades (3.78% and 5%) for
different lengths, was also done through paired t-test for 5 degrees of freedom at level of
significance of 0.05. The calculated t-statistic values for sections I and II on 3.78% upgrade,
are respectively 0.0166 and 1.27 against the table value of 2.57. The calculated t-statistic
values for sections I, II and III on 5% upgrade, are respectively 1.23, 0.343 and 0.862 against
the table value of 2.57. In all the cases (upgrades of magnitude 3.78% and 5%), it can be
seen that the value of t statistic, calculated based on the observed data, is less than the
corresponding table value. This implies that there is no significant difference between the
simulated and observed mean speeds at all the sections. The validation results of the
simulation model of heterogeneous traffic flow indicate that the model is capable of
replicating the heterogeneous traffic flow on Indian intercity roads having upgrades of
different magnitude to a highly satisfactory extent.
Table 5: Model validation by comparison of speeds on sections of 3.78% upgrade
L.C.V–Light commercial vehicles, M.Th.W- Motorized Three- Wheelers, M.T.W- Motorized Two-Wheelers
Table 6: Model validation by comparison of speeds on sections of 5 % upgrade
L.C.V–Light commercial vehicles, M.Th.W- Motorized Three- Wheelers, M.T.W- Motorized Two-Wheelers
3.0 Model application
The ‘HETEROSIM’ model of traffic flow can be applied to study various heterogeneous
traffic scenarios for varying traffic and roadway conditions in developing countries like India.
In this paper, the application of the model is to develop relationship between traffic volume
and speed for varying roadway conditions (four-lane divided roadways with upgrades having
magnitude varying from 2% to 6%) and then to quantify the relative impact of the presence of
each of the different types of vehicles on traffic flow by estimating the PCU values under
heterogeneous traffic conditions in India, for different categories of vehicles.
Vehicle
category
(1)
Section I Section II
Average
Observed Speed
(2)
Average
Simulated Speed
(3)
Average
Observed Speed
(4)
Average
Simulated Speed
(5)
Buses 48.12 47.38 45.64 45.03
Trucks 38.68 38.38 36.44 37.11
L.C.V. 51.18 53.35 49.69 52.38
Cars 70.79 69.68 68.95 68.33
M.Th.W 36.97 36.22 35.39 36.09
M.T.W 51.22 51.90 50.74 51.71
Vehicle
category
(1)
Section I Section II Section III
Average
Observed
Speed
(2)
Average
Simulated
Speed
(3)
Average
Observed
Speed
(4)
Average
Simulated
Speed
(5)
Average
Observed
Speed
(6)
Average
Simulated
Speed
(7)
Buses 40.13 37.96 37.67 35.98 35.05 34.74
Trucks 34.37 33.22 31.38 31.87 30.05 30.52
L.C.V. 43.62 42.96 41.89 41.34 40.07 40.35
Cars 64.82 64.00 63.23 61.91 60.95 59.86
M.Th.W 33.09 33.40 32.35 33.12 31.86 33.06
M.T.W 48.78 49.85 48.16 49.45 47.49 48.93
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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3.1 Development of speed-flow relationships
Since the research work reported here is aimed at studying the effect of upgrade on PCU
value of different vehicle categories under heterogeneous traffic for a set of traffic volume
levels falling over a wide range, a four-lane divided roads with 8.75 m of road space (main
roadway plus shoulder) available for each direction of movement with magnitude of upgrades
of 2%, 3%, 4%, 5% and 6% were considered for the model application. For this purpose, a
mean representative traffic composition (Fig. 4) was considered for simulating traffic flow on
different upgrades. This mean traffic composition has been considered for the purpose of
model application, calculated using traffic compositions observed on the identified stretches
of upgrades of magnitude 3.78 and 5% (Table 4).
Figure 4: Representative traffic composition for model application L.C.V. - Light Commercial Vehicles, M.Th.W. – Motorized Three-Wheelers, M.T.W. - Motorized Two-Wheelers
The input data on free speeds at the initial position, required for simulating the traffic flow
on grades, was collected on a stretch between km 77.2 and km 77.4, of National Highway
No. 45 near Chennai (Southern part of India), which is a four-lane divided road (total width
for one direction: 8.75 m). The stretch is straight and level with no side road connections.
Also, the traffic flow on the study stretch was unhindered by the road side land uses. The
field observed free speed data is given in Table 7. By giving free speeds (observed on 8.75 m
wide level road), as input at the entry position of road stretch considered for simulating traffic
flow on upgrades, it was possible to model the movement of vehicles approaching an upgrade
of given magnitude from level roads. The acceleration rates, over different speed ranges,
required for simulation of heterogeneous traffic flow on grades, were estimated for different
upgrades of magnitude varying from 2% to 6%, using equation (1), as explained earlier. The
length of observation stretch (used for noting outputs) for simulation was considered as 1600
m. Giving the other relevant data as input, for the traffic flow on the roadway and traffic
conditions pertaining to the different upgrades were simulated for volume levels ranging from
a very low level to the maximum possible value (capacity) and the speeds corresponding to
each of the volume levels were obtained as output. In this regard, it may be noted that when
simulation runs are made with successive increments in traffic volume (input), there will be
commensurate increase in the exit volume at the end of simulation stretch. When the volume
reaches the capacity level, the increments in the input traffic volumes may not result in the
same amount of increase in the exit volume resulting in a decrease in the rate of traffic flow.
A few successive decreases in the exit volume (in spite of increase in the input) indicate that
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
18
roadway has reached its capacity. The plots made relating the speed and the flow, for all the
upgrades (2% to 6%), on the same set of axes, is shown in Fig. 5.
R² = 0.9897 R² = 0.9702 R² = 0.9772
R² = 0.9802 R² = 0.9886
0.00
10.00
20.00
30.00
40.00
50.00
60.00
70.00
200 300 400 500 600 700 800 900 1000 1100 1200 1300 1400 1500
Avera
ge S
tream
Sp
eed
(km
/h)
Volume (vehicles per hour)
2%
3%
4%
5%
6%
Figure 5: Speed–volume relationships on different upgrades
It can be seen that the developed speed-flow relationships follow the well established
trend, indicating the validity of the model to simulate heterogeneous traffic flow on different
upgrades of magnitudes varying from 2% to 6%. The capacity values of 8.75 m wide roads,
having upgrades of magnitude 2%, 3%, 4%, 5% and 6%, for a length of 1600 m, under
heterogeneous traffic for the traffic composition (Fig. 4) considered, are found to be 1360,
1210, 1120, 1050 and 1010 vehicles/h, respectively.
Table 7: Free speeds of different vehicle types on 8.75m wide level road
L.C.V. - Light Commercial Vehicles, M.Th.W. – Motorized Three-Wheelers, M.T.W. - Motorized Two-Wheelers
It may be noted that the speed-volume relationships for the homogeneous traffic flow in
developed countries like USA (HCM, 2000), Germany, etc. are generally flat up to certain
volume level, beyond which speed drops down below free-flow speed as the curve goes
towards capacity. Whereas, in the case of heterogeneous traffic conditions in India, speeds of
Vehicle type
(1)
Free speed parameters in km/h
Mean
(2)
Max.
(3)
Min.
(4)
Standard
deviation
(5)
Buses 70 90 45 10
Trucks 62 90 53 8
L.C.V. 67 90 50 6
Cars 86 110 60 15
M.Th.W 52 55 45 3
M.T.W 57 75 35 11
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different vehicle categories and hence the traffic stream speed drops down quickly whenever
there is increase in traffic volume, as shown in Figure 5 . This is because of increasing level
of interaction among different vehicle categories with increase in volume level. It may be
noted in this regard that, homogeneous traffic has strict lane discipline and has traffic entity
types whose characteristics do not vary much. On the contrary, heterogeneous traffic
comprises of vehicles with wide ranging static and dynamic characteristics such as vehicle
size, engine power, acceleration/deceleration, maneuvering capabilities, etc. Due to the
highly varying physical dimensions and speeds, the vehicles do not follow traffic lane, and
occupy any lateral position based on the space availability, on the whole of the road space
available for the vehicular movement. Therefore, level of interaction among the vehicles in
heterogeneous traffic may be relatively more even under free-flow conditions. Hence, the
speed-volume relationships are entirely different under homogeneous and heterogeneous
traffic conditions.
3.2 Speed-distance profile for different vehicle categories on upgrades
The speed-distance relationship can be developed by simulating heterogeneous traffic flow
on the chosen roadway with a specified gradient and noting down the change in speed of
vehicles at regular intervals over space, while the vehicles negotiate the upgrade. For the
purpose of simulation, the volume level corresponding to Volume-to-capacity (V/C) ratio
value of 0.5 (normally used as design service volume in India with respect to level of service
B) was considered for developing speed-distance curves for different vehicle categories along
different grades. The free speed values for different vehicle categories, traffic composition (as
shown in figure 4) and the estimated acceleration rates for the different vehicle categories at
different speed ranges, were given as input to the simulation model for simulating the traffic
flow along the different grades ranging from 2% to 6% considered for this study under
heterogeneous traffic conditions in India. The total length of road stretch, for simulation
purpose, was taken as 3,400 m. The middle 3000 m length of the simulation stretch was used
to collect the data of the simulated average speed for each vehicle category at every 200 m
interval. The simulation model was run with three random number seeds, and the average of
the three runs was taken as the final output of the model. The speed-distance relationships
were thus developed, for different vehicle categories, for each of the different grades. The
relationships thus, obtained, in respect of buses and cars are depicted in Fig. 6 and 7,
respectively, as examples. From the Figures, it can be noted that vehicle performance (speed
reduction) pertaining to the different grades, is different across different vehicle categories. In
the case of heavy vehicles such as buses, having lower power-to-weight ratio, there is
significant reduction in speed, whereas, for other smaller vehicles such as cars, having higher
power-to-weight ratio, there is relatively lesser speed reduction. It can also be noted that for
buses, there is a significant speed reduction, on all the upgrades, up to a distance of 1600 m,
beyond which the speed-distance curve is relatively flatter indicating that there is no
significant speed reduction beyond that point. This was also confirmed using statistical
paired-t test, at 5% level of significance. In the case of heterogeneous traffic conditions in
India, speeds of heavy vehicle categories were found to be decreasing sharply with increase
in magnitude of upgrade and its length, as shown in Figure 6. Therefore, it may be concluded,
that the rate of speed reduction for the vehicles on upgrades can vary based on the type of
vehicle and is a function of power-to-weight ratio of the vehicle type. This can also be
attributed to the increasing level of interaction among different vehicle categories with
increase in length of upgrade and its magnitude.
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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Figure 6: Speed-distance profile for buses on different upgrades
Figure 7: Speed-distance profile for cars on different upgrades
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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3.3 Estimation of PCU values
As one of the objectives of this research work is to study the effect of magnitude of
upgrade and its length on PCU values of vehicles, the PCU values of the different categories
of vehicles were estimated, by simulating traffic flow on different upgrades, varying from 2%
to 6%, over different lengths, at intervals of 400 m, namely, 0 to 400 m, 400 to 800 m, 800 to
1200m, and 1200 to 1600 m (based on the guidelines given in HCM 2000, USA). The length
of 1600 m, along the different upgrades, was fixed as the limiting value based on the finding
that there is no significant change in the speed of vehicles (while negotiating upgrades)
beyond 1600 m (Fig. 6 and 7 depict the fact for buses and cars, respectively). Under
heterogeneous traffic conditions prevailing in developing countries like India, quantification
of change in vehicular interactions, over a wide range of roadway and traffic conditions, can
be done better by taking speed as the measure of performance, since it may reflect the
combination of factors contributing to the overall influence of the subject-vehicle type on the
performance of the traffic stream. The simulation logic of the heterogeneous traffic-flow
model (HETEROSIM), used for the study in India, accounts for the dimensions of vehicles,
their free speeds, acceleration characteristics, vehicle-specific gap requirements in a
heterogeneous traffic stream (longitudinal and transverse directions), etc. Hence, taking
average speed of traffic stream as measure of performance, for finding the equivalent number
of subject-vehicle type (for which PCU value is to be estimated), which would create the
same impact on the heterogeneous traffic stream as that of the specified number of reference
vehicle category (passenger cars), is a satisfactory basis for estimating the PCU value of a
given vehicle type, interacting under the given traffic conditions in India.
The PCU has been defined by Transport and Road Research Laboratory (TRRL), London,
UK in 1965 as follows: “on any particular section of road under particular traffic conditions,
if the addition of one vehicle of a particular type per hour will reduce the average speed of
the remaining vehicles by the same amount as the addition of, say x cars of average size per
hour,….then, one vehicle of this type is equivalent to x PCU.” This definition has been taken
as the basis for derivation of PCU values, for the different types of vehicles, in this study.
Hence, the PCU values for the different types of vehicles, at various volume levels, were
estimated by taking the average stream speed as the measure of performance.
The method adopted for estimation of PCU values involves the following steps: (i) For the
purpose, five traffic volume levels, corresponding to volume to capacity ratios of 0.30, 0.50,
0.60, 0.80 and 1.0 were considered. While simulating heterogeneous traffic flow
corresponding to the V/C ratios, in each case, a certain percentage of cars was replaced by the
subject vehicle type (for which the PCU value is to be estimated) in the heterogeneous traffic
stream, such that the average stream speed, obtained by simulation, before and after
replacement, remained the same. (ii) Then, for each flow level, the number of cars removed
divided by the number of subject-vehicle type introduced will give the PCU value of that
vehicle type. To account for the variation due to randomness, the simulation runs with three
random number seeds were found sufficient to get consistent PCU values and the average of
the three values was taken as the final value. The logic behind the above approach is that, as
stated in the definition of PCU, the introduced subject-vehicle type creates, more or less, the
same effect on the traffic stream that is equivalent to that of the cars removed from the
stream. For the purpose of estimating PCU values on upgrades, traffic of the same
composition (Fig. 4) on roadway width of 8.75 m (equivalent to the width of road space for
one direction of movement on four-lane divided roadway of intercity road) was considered.
The PCU value of the subject-vehicles were determined, following the said procedure, for
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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upgrades varying from 2% to 6%, for a set of traffic volume levels, corresponding to volume-
to-capacity ratios of 0.30, 0.50, 0.60, 0.80, and 1.0. Since the capacity of a roadway section
varies with magnitude of upgrade, the PCU values on these roads need to be compared based
on some common traffic flow criterion. For this purpose, volume-to-capacity ratio (V/C ratio)
was selected as the traffic flow criterion common to different upgrades. Though, it was
observed that the average speed reduction for the vehicles beyond 1600 m along the upgrade,
is relatively less, it was decided to additionally check for the change in PCU value also by
simulating traffic flow beyond 1600 m. It was found that for all the vehicle categories, on all
the upgrades, the change in PCU value beyond 1600 m is not significant. Hence, it was
decided to have single estimate of PCU value, when the length of upgrade is more than 1600
m.
The variation of PCU values of heavy vehicles such as buses, trucks, light commercial
vehicles and smaller vehicles such as motorized two-wheelers and motorized three-wheelers,
for upgrades of 3%, 4% and 5% at selected road lengths of 0 to 400 m, 400 to 800 m, 800 to
1200 m, 1200 to 1600 m, and more than 1600 m, over traffic volume, obtained through
simulation, are presented here as examples, in Tables 8 and 9, respectively. The magnitude of
PCU values of heavy vehicles such as buses, trucks, and light commercial vehicles is found
to be higher than the magnitude of the PCU value given by Highway capacity manual of USA
(HCM, 2000). This may be attributed to the heterogeneous traffic nature and diverse static
and dynamic characteristics of vehicles present in India. It can be seen from Table 8, that for
a given magnitude of upgrade and its length, at low volume levels, in the case of vehicles that
are larger in size than car such as buses, trucks and light commercial vehicles, the PCU value
decreases with increase in traffic volume (value of V/C ratio) and at high volume levels
(When V/C ratio is 0.6 and more), the PCU increases with the increase in traffic volume.
Whereas, in the case of vehicles that are smaller than cars such as motorized three-wheelers
and motorized two-wheelers (Table 9), for a given magnitude of upgrade and its length, at
low volume levels, the PCU value increases with increase in traffic volume and at high
volume levels (When V/C ratio is 0.6 and more), the PCU decreases with increase in traffic
volume. It was also found that, for all the vehicle categories, at all the chosen V/C ratios and
given length, the PCU value (level of interaction among the vehicles) increases with increase
in magnitude of upgrade from (3% to 5%). It was also found that the PCU value of all the
vehicle categories, on all the upgrades, at any V/C ratio, increases with increase in its length.
From Tables 8 and 9, it can be noted that the increase in PCU value (level of interaction
among the vehicles) is relatively more in case of heavy vehicles such as trucks, buses and
light commercial vehicles, whereas, the increase in PCU value is small for smaller vehicles
like motorized two-wheelers and three-wheelers. This may be attributed to the inferior
performance of heavy vehicles on grades in comparison with the smaller vehicles.
The variation of the PCU value of buses and motorized three-wheelers, on upgrades of
magnitude 3%, 4% and 5%, for the stretch from 1200 to 1600 m, as examples, has been
depicted in Fig. 8 and 9, respectively. Also, the variation of the PCU value of buses and
motorized three-wheelers, on upgrades of magnitude 4% over different grade lengths, as
examples, have been depicted in Fig. 10 and 11, respectively.
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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Table 8: Variation of PCU value of heavy vehicles over volume and road length for different
upgrades of magnitude 3%, 4% and 5%
Description of Road
Stretch
(Length m)
(1)
V/C ratio = 0.30
PCU value of Buses PCU value of Trucks PCU Value of LCV
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
3%
(8)
4%
(9)
5%
(10)
0-400 4.12 4.33 4.49 4.32 4.48 4.61 2.71 2.89 3.00
400-800 4.50 4.70 4.80 4.66 4.79 4.95 2.92 3.12 3.22
800-1200 4.78 4.92 5.02 5.06 5.19 5.36 3.19 3.31 3.41
1200-1600 5.06 5.24 5.33 5.46 5.63 5.71 3.45 3.54 3.61
> 1600 5.23 5.39 5.50 5.67 5.82 5.92 3.61 3.71 3.78
Grade
Length (m)
(1)
V/C ratio = 0.50
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
3%
(8)
4%
(9)
5%
(10)
0-400 3.49 3.75 3.95 3.80 3.95 4.17 2.30 2.55 2.75
400-800 3.79 4.05 4.25 4.12 4.26 4.49 2.52 2.76 2.93
800-1200 4.15 4.38 4.58 4.49 4.61 4.82 2.73 2.92 3.09
1200-1600 4.50 4.65 4.87 4.75 4.89 5.11 2.95 3.15 3.27
> 1600 4.66 4.82 5.02 4.95 5.05 5.29 3.08 3.3 3.41
Grade
Length (m)
(1)
V/C ratio = 0.60
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
3%
(8)
4%
(9)
5%
(10)
0-400 3.41 3.67 3.85 3.74 3.87 4.05 2.25 2.45 2.65
400-800 3.71 3.95 4.15 4.02 4.18 4.40 2.45 2.65 2.81
800-1200 4.09 4.31 4.43 4.38 4.58 4.71 2.68 2.88 3.00
1200-1600 4.41 4.59 4.75 4.70 4.87 5.05 2.91 3.05 3.18
> 1600 4.59 4.73 4.90 4.89 5.01 5.19 3.04 3.14 3.32
Grade
Length (m)
(1)
V/C ratio = 0.80
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
3%
(8)
4%
(9)
5%
(10)
0-400 3.97 4.15 4.29 4.15 4.30 4.42 2.55 2.73 2.86
400-800 4.31 4.45 4.58 4.45 4.61 4.71 2.80 2.95 3.02
800-1200 4.55 4.72 4.88 4.85 4.99 5.12 2.97 3.12 3.21
1200-1600 4.80 4.95 5.11 5.11 5.25 5.49 3.18 3.35 3.42
> 1600 4.89 5.06 5.23 5.22 5.34 5.61 3.27 3.43 3.52
Grade
Length (m)
(1)
V/C ratio = 1.0
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
3%
(8)
4%
(9)
5%
(10)
0-400 4.22 4.52 4.88 4.40 4.65 4.95 2.80 3.11 3.28
400-800 4.60 4.89 5.26 4.75 5.05 5.35 3.05 3.33 3.48
800-1200 4.90 5.30 5.65 5.20 5.45 5.71 3.31 3.55 3.73
1200-1600 5.40 5.70 6.05 5.65 5.85 6.28 3.55 3.80 4.00
> 1600 5.49 5.79 6.14 5.75 5.94 6.37 3.63 3.87 4.08
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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Table 9: Variation of PCU value of smaller vehicles over volume and road length for
different upgrades of magnitude 3%, 4% and 5%
Description
of Road
Stretch
(Length m)
(1)
V/C ratio = 0.30
PCU value of Motorized Three-
Wheelers
PCU value of Motorized Two-
Wheelers
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
0-400 1.02 1.05 1.07 0.56 0.63 0.68
400-800 1.08 1.12 1.14 0.64 0.70 0.75
800-1200 1.16 1.21 1.24 0.72 0.77 0.81
1200-1600 1.24 1.27 1.30 0.81 0.84 0.88
> 1600 1.29 1.31 1.35 0.86 0.88 0.92
Grade
Length (m)
(1)
V/C ratio = 0.50
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
0-400 1.22 1.29 1.33 0.63 0.69 0.74
400-800 1.32 1.37 1.40 0.70 0.76 0.81
800-1200 1.41 1.47 1.50 0.79 0.84 0.88
1200-1600 1.49 1.55 1.57 0.87 0.91 0.95
> 1600 1.54 1.59 1.61 0.91 0.94 0.97
Grade
Length (m)
(1)
V/C ratio = 0.60
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
0-400 1.30 1.35 1.40 0.65 0.71 0.75
400-800 1.39 1.45 1.48 0.72 0.78 0.82
800-1200 1.49 1.55 1.58 0.81 0.86 0.90
1200-1600 1.56 1.61 1.65 0.89 0.93 0.96
> 1600 1.61 1.65 1.69 0.93 0.96 0.98
Grade
Length (m)
(1)
V/C ratio = 0.80
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
0-400 1.26 1.30 1.35 0.63 0.67 0.73
400-800 1.35 1.39 1.43 0.70 0.74 0.79
800-1200 1.43 1.47 1.51 0.78 0.83 0.87
1200-1600 1.51 1.55 1.58 0.86 0.90 0.94
> 1600 1.55 1.58 1.61 0.91 0.94 0.96
Grade
Length (m)
(1)
V/C ratio = 1.0
3%
(2)
4%
(3)
5%
(4)
3%
(5)
4%
(6)
5%
(7)
0-400 1.15 1.20 1.24 0.59 0.63 0.68
400-800 1.22 1.27 1.31 0.65 0.69 0.75
800-1200 1.32 1.36 1.39 0.75 0.79 0.83
1200-1600 1.39 1.44 1.46 0.82 0.85 0.89
> 1600 1.43 1.47 1.49 0.86 0.88 0.92
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
25
In all the cases, the attempt to find the possible reason for the trend of variation of PCU
value over volume (V/C ratio), magnitude of gradient and its length, revealed that the relative
changes in the speeds of the reference vehicle (car) and the subject vehicle (such as buses,
motorized three-wheelers) because of varying levels of interactions, at various traffic volume
levels are the main contributors to the trend. The change in speed difference under
heterogeneous traffic conditions, in respect of the cars and buses, can be calculated as the
percentage change in the speed of cars minus the percentage change in the speed of buses for
the successive V/C ratios, for a given magnitude of upgrade and its length. The trends of the
change in speed difference between cars and buses and also cars and motorized three-
wheelers, for upgrades of magnitude starting from 3% to 5%, for the stretch from 1200 to
1600 m, as examples, are shown in Fig. 12 and 13, respectively. It can be seen that in both
the cases, the trend lines pertaining to the variation of speed difference over volume (V/C
ratio) exhibit the same pattern as in the case of variation of PCU for buses and motorized
three-wheelers (Fig. 8 and 9) . Moreover, it can be noted that at all the volume-to-capacity
(V/C ratios) levels, the difference in percentage change, at a given length, increases with
increase in magnitude of upgrade. Hence, it is clear that the increase in speed difference
between cars and other categories of vehicles, with increase in magnitude of upgrade, has
resulted in higher PCU values with increase in the magnitude of upgrade. The trends of the
change in speed difference between cars and buses and cars and motorized three-wheelers,
for the upgrades of magnitude 4%, over different lengths, are shown, as examples, in Fig. 14
and 15. It can be seen that in both the cases, the trend lines pertaining to the variation of
speed difference over volume (V/C ratio) exhibit the same pattern as in the case of variation
of PCU for buses and motorized three-wheelers (see Fig. 10 and 11) . It can also be noted
(see Fig. 14 and 15) that at all the volume-to-capacity (V/C ratio) levels, at a given upgrade
(4%), the difference in percentage speed change between cars and the subject vehicle
categories (buses and motorized three-wheelers) is found to be increasing with increase in
length of upgrade. Hence, it is clear that the increase in speed difference between cars and
other categories of vehicles with increase in length of upgrade has resulted in increased PCU
values.
R² = 0.9961
R² = 0.9997
R² = 0.998
4
4.5
5
5.5
6
6.5
0.2 0.4 0.6 0.8 1 1.2
PC
U V
alu
e
V/C Ratio
3% 4% 5%
Figure 8: Comparison of PCU values of buses on upgrades of magnitude 3%, 4% and 5% for
road stretch from 1200 to 1600 m
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
26
R² = 0.9947
R² = 0.9974
R² = 0.9906
1.1
1.2
1.3
1.4
1.5
1.6
1.7
0.2 0.4 0.6 0.8 1 1.2
PC
U V
alu
e
V/C Ratio
3% 4% 5%
Figure 9: Comparison of PCU values of motorized three-wheelers on upgrades of magnitude
3%, 4% and 5% for road stretch from 1200 to 1600 m
R² = 0.9882
R² = 0.9892
R² = 0.9964
R² = 0.9997
R² = 0.999
3.00
3.50
4.00
4.50
5.00
5.50
6.00
0.2 0.4 0.6 0.8 1 1.2
PC
U V
alu
e
V/C Ratio
400 m 800 m 1200 m 1600 m > 1600 m
Figure 10: Comparison of PCU values of buses, along different lengths of upgrade of
magnitude 4 %
Figure 11: Comparison of PCU values of motorized three-wheelers, along different lengths of
upgrade of magnitude 4 %
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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Figure 12: Comparison of difference in speed change between cars and buses on different
upgrades for road stretch from 1200 to 1600 m
Figure 13: Comparison of difference in speed change between cars and motorized three-
wheelers on different upgrades for road stretch from 1200 to 1600 m
Figure 14: Comparison of difference in speed change between cars and buses, along
different lengths of upgrade of magnitude 4 %
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Figure 15: Comparison of difference in speed change between cars and motorized three-
wheelers, along different lengths of upgrade of magnitude 4 %
3.4 Check for accuracy of estimated PCU values
For the purpose of checking for the accuracy of the PCU estimates for the different
categories of vehicles on roads having grades of different magnitudes, first, the
heterogeneous traffic flow of the same representative traffic composition (Fig. 4) was
simulated for one hour period, for upgrades of magnitude varying from 3% to 5%, over
different lengths (0- 400 m, 400 - 800 m, 800 -1200 m, 1200 -1600 m and more than 1600 m)
for selected values of V/C ratios and the number of vehicles passing the simulation stretch, in
each category, for each case, was noted. Then, the vehicles of the different categories were
converted into equivalent PCUs by multiplying the number of vehicles in each category, by
the corresponding PCU values (Tables 8 and 9). The products, thus obtained, were summed
up to get the total traffic flow in PCU/h (equivalent traffic flow under heterogeneous traffic
conditions in India), for each of the upgrades over different lengths. Then, the flows for cars-
only traffic condition were obtained through simulation, for the same set of V/C ratio values
(taking the capacity value from the speed-flow curve developed corresponding to cars-only
traffic on each of the upgrades). Thus, the traffic volume, in terms of number of cars, was
obtained for the set of selected V/C ratios for different upgrades. The comparison of the two
traffic flows, in terms of PCU and passenger cars, was done for each of the upgrades in two
ways: (i) over a range of V/C ratios at a given length of upgrade of certain magnitude and (ii)
over different lengths of upgrade of certain magnitude for a given V/C ratio. A comparison of
the two traffic flows, in terms of PCU and passenger cars, for a range of V/C ratios, on a
stretch from 1200 to 1600 m, on upgrade of magnitude 4%, as example, is shown in Fig.16.
Also, comparison of traffic flows in terms of PCU and passenger cars, for V/C ratio of 0.5,
for different stretches on upgrades of 4%, as example, is shown in Fig. 17. It can be seen that,
in both the cases, the two values match with one another to a satisfactory extent. Paired t-
tests, based on the passenger cars equivalent (PCU/h) and passenger cars-only (cars/h) traffic
volumes, for each of the upgrades (3% to 5%), were also done and it was found that there
were no significant differences between the traffic volumes measured in terms of passenger
cars and in PCU for 5% level of significance.
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Figure 16: Comparison of heterogeneous traffic and cars-only traffic flows on 4% upgrade
over different v/c ratios at grade length of 1200-1600 m
Figure 17: Comparison of heterogeneous traffic and cars-only traffic flows on 4% upgrade
over different lengths at V/C ratio of 0.50.
4.0 Conclusions
In order to estimate the traffic volume or capacity of roadway sections under heterogeneous
traffic conditions, it is required to quantify the interaction between the moving vehicles over
a wide range of roadway and traffic conditions. The interaction between the vehicles can be
represented in terms of the amount of impedance caused to flow of traffic by a vehicle type in
comparison with that of passenger cars (reference vehicle). The relative impedance can be
quantified in terms of Passenger Car Units (PCU). The Passenger Car Unit (PCU) or
Passenger Car Equivalent (PCE) is the universally adopted unit of measure for traffic volume
or capacity. Thus, the traffic flow with any vehicular composition can be expressed in its
equivalent Passenger Car Units. Under heterogeneous traffic conditions prevailing in
developing countries like India, due to the highly varying physical dimensions and speeds of
the vehicles, it becomes difficult to enforce lane discipline. Consequently, for maneuver, the
vehicles tend to take any lateral position along the width of roadway, based on the space
availability. When such different types of vehicles with varying static and dynamic
characteristics are allowed to mix and move on the same roadway facility, a variable set of
longitudinal and transverse distribution of vehicles may be noticed from time to time. Under
the said traffic conditions, quantification of change in vehicular interactions, over a wide
range of roadway and traffic conditions, can be done better by taking speed as the measure of
performance, since it reflects the combination of the factors contributing to the overall
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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influence of the type of vehicle on the performance of the traffic stream. Speed is a
performance measure which is accurately measurable and directly experienced by all users of
a highway.
The Simulation model of the heterogeneous traffic-flow, named, HETEROSIM, used for
the study, accounts for the dimensions of vehicles, their free speeds, acceleration
characteristics, space gap requirements (longitudinal and transverse), etc. Hence, taking
average speed of traffic stream as measure of performance, for finding the equivalent number
of subject vehicle type (for which PCU value is to be estimated), which would create the
same impact on the traffic stream as that of the specified number of reference vehicle
category (passenger cars), is a satisfactory basis for estimating the PCU value of a vehicle
type, under heterogeneous traffic conditions. The following are the important conclusions of
this study:
1. The validation results of the simulation model of heterogeneous traffic flow indicate
that the model is capable of replicating the heterogeneous traffic flow on intercity roads
having upgrades of different magnitude to a highly satisfactory extent.
2. Expressing traffic volume as number of vehicles passing a given section of road or
traffic lane per unit time will be inappropriate when several types of vehicles with
widely varying static and dynamic characteristics are comprised in the traffic. The
problem of measuring volume of such heterogeneous traffic has been addressed by
converting the different types of vehicles into equivalent passenger cars using dynamic
PCU values, estimated through this study and expressing the volume in terms of
Passenger Car Unit (PCU) per hour.
3. From the speed-volume curves, developed using the simulation model, it is found that,
for the representative traffic composition, the capacities of four-lane divided 8.75 m
wide roads having upgrades of magnitudes 3%, 4%, and 5%, for one direction of traffic
flow, for a grade length of 1600 m, are about 4100 PCU/h, 3900 PCU/h and 3700
PCU/h, respectively.
4. It is found that, under heterogeneous traffic conditions, for a given roadway condition
and traffic composition, the PCU value of vehicles (interaction level among vehicles)
vary significantly with change in traffic volume. Hence, it is desirable, to treat PCU as
dynamic quantity.
5. The trend of variation of the PCU value, over traffic volume, under heterogeneous
traffic conditions in India, indicates that (i) in the case of vehicles that are larger than
passenger cars, at low volume levels, the PCU value decreases with increase in traffic
volume and at high traffic volume levels, the PCU value increases with increase in
traffic volume and (ii) whereas, in the case of vehicles that are smaller than passenger
cars, at low volume levels, the PCU value increases with increase in traffic volume and
at high volume levels, the PCU value decreases with increase in traffic volume.
6. It was found that the rate of speed reduction for the vehicles, on upgrades, will vary
based on the type of vehicle and it is a function of power-to-weight ratio. In the case of
heterogeneous traffic conditions in India, speeds of heavy vehicle categories were
found to be decreasing sharply with increase in magnitude of upgrade and its length.
This can also be attributed to the increasing level of interaction among different vehicle
categories with increase in length of upgrade and its magnitude. Based on the
simulation experiments conducted for developing speed-distance profiles for each of
the vehicle types under heterogeneous traffic conditions in India, it was found that the
effect of grade on the vehicle performance (speed reduction) may not be significant
beyond a length of 1600 m.
European Transport \ Trasporti Europei (2012) Issue 52, Paper n° 4, ISSN 1825-3997
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7. The results of the simulation experiments conducted to study the effect of magnitude of
upgrade and its length on PCU values indicate that for any vehicle type, in
heterogeneous traffic, the PCU value increases significantly with increase in the
magnitude of grade as well as its length. The magnitude of PCU values of heavy
vehicles such as buses, trucks, and light commercial vehicles is found to be higher than
the magnitude of the PCU value given by Highway capacity manual of USA (HCM,
2000). This may be attributed to the heterogeneous traffic nature and diverse static and
dynamic characteristics of vehicles present in India.
Limitations of the Study
The following are the limitation of the study:
1. The driver behavior which depends on physical, mental, psychological and
environmental factors could not be incorporated in the model due to difficulties in
measurement and quantification of the influencing factors.
2. The model, in its present form, can simulate only one-way traffic movement which
restricts its application to only divided roads.
Scope for Further Research
1. Through this study, the effects of change in traffic volume, magnitude of upgrade and
its length on PCU values of different vehicle categories of heterogeneous traffic have
been analyzed in detail. There is further scope for the study of the effect of variation in
traffic composition on PCU values of different categories of vehicles in heterogeneous
traffic. As there are several categories of vehicles in heterogeneous traffic, attempts to
change the traffic composition may results in a number of traffic situations making the
problem highly complex. However, it is worth attempting in spite of the anticipated
complexities.
2. In future, the authors would like to study the effect of traffic volume and magnitude of
downgrade on PCU values of different vehicle categories of heterogeneous traffic.
3. There is scope for further research towards improving the model capabilities. The
model can be augmented to replicate two-way traffic flow on undivided roads by
incorporating suitable simulation logic for movement of vehicles in opposing streams,
so that the vehicular interactions can be quantified for two-way traffic conditions also.
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